| Literature DB >> 26309811 |
David J Klinke1, Marc R Birtwistle2.
Abstract
Identifying the network of biochemical interactions that underpin disease pathophysiology is a key hurdle in drug discovery. While many components involved in these biological processes are identified, how components organize differently in health and disease remains unclear. In chemical engineering, mechanistic modeling provides a quantitative framework to capture our understanding of a reactive system and test this knowledge against data. Here, we describe an emerging approach to test this knowledge against data that leverages concepts from probability, Bayesian statistics, and chemical kinetics by focusing on two related inverse problems. The first problem is to identify the causal structure of the reaction network, given uncertainty as to how the reactive components interact. The second problem is to identify the values of the model parameters, when a network is known a priori.Entities:
Keywords: JAK-STAT signaling pathways; Markov Chain Monte Carlo methods; inverse problems; quantitative and systems pharmacology
Year: 2015 PMID: 26309811 PMCID: PMC4545575 DOI: 10.1016/j.coche.2015.07.006
Source DB: PubMed Journal: Curr Opin Chem Eng ISSN: 2211-3398 Impact factor: 5.163